Advances in Artificial Rabbits Optimization: A Comprehensive Review
Künye
ANKA, Ferzat, Nazım AĞAOĞLU, Sajjad NEMATZADEH & Mahsa TORKAMANIAN‑AFSHAR. "Advances in Artificial Rabbits Optimization: A Comprehensive Review". Archives of Computational Methods in Engineering, (2024): 1-36.Özet
This study provides an in-depth review and analysis of the Artificial Rabbit Optimization (ARO) algorithm inspired by the
survival strategies of rabbits. The ARO tries to find the global solution in the search space according to the rabbits’ detour
foraging strategy and searches locally according to their random hiding structure. This algorithm has various advantages such
as a simple structure, fast running model, easy adaptation feature, few parameters, independent mechanism in exploration
and exploitation phases, transitions between phases with a specific mechanism, reasonable convergence rate, and property
of escaping local optima. Therefore, it has been preferred by many researchers to solve various complex optimization problems.
ARO-based studies have been published at prestigious international publishers such as Elsevier, Springer, MDPI, and
IEEE since its launch in July 2022. The rates of studies in these publishers are 34%, 19%, 18%, and 15%, respectively. The
remaining 14% includes papers published by other publishers. Besides, the cited studies on this algorithm are examined
in four categories: Improved, hybrid, variants, and adapted. Research trends demonstrate that 27%, 31%, 9%, and 33% of
ARO-based studies fall into these categories.